Halper M, Wang Y, Min H, Chen Y, Hripcsak G, Perl Y and Spackman KA
Analysis of Error Concentrations in SNOMED.
in Teich M, Suermondt J and Hripcsak G (eds.) Proceedings of the 2007 AMIA Conference,
pp.314-318.
Abstract: Two high-level abstraction networks for the knowledge
content of a terminology, known respectively as the
"area taxonomy" and "p-area taxonomy," have previously
been defined. Both are derived automatically
from partitions of the terminology's concepts. An important
application of these networks is in auditing,
where a number of systematic regimens have been formulated
utilizing them. In particular, the taxonomies
tend to highlight certain kinds of concept groups where
errors are more likely to be found. Using results garnered
from applications of our auditing regimens to
SNOMED CT, an investigation into the concentration
of errors among such groups is carried out. Three hypotheses
pertaining to the error distributions are put
forth. The results support the fact that certain groups
presented by the taxonomies show higher error percentages
as compared to other groups. The bootstrap
is used to assess their statistical significance. This
knowledge will help direct auditing efforts to increase
their impact.
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